Modifying inhibitor specificity for homologous enzymes by machine learning.

IF 4.2
Dor S Gozlan, Reut Meiri, Gili Shapira, Matt Coban, Evette S Radisky, Yaron Orenstein, Niv Papo
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引用次数: 0

Abstract

Selective inhibitors are essential for targeted therapeutics and for probing enzyme functions in various biological systems. The two main challenges in identifying such protein-based inhibitors lie in the extensive experimental effort required, including the generation of large libraries, and in tailoring the selectivity of inhibitors to enzymes with homologous structures. To address these challenges, machine learning (ML) is being used to improve protein design by training on targeted libraries and identifying key interface mutations that enhance affinity and specificity. However, such ML-based methods are limited by inaccurate energy calculations and difficulties in predicting the structural impacts of multiple mutations. Here, we present an ML-based method that leverages HTS data to streamline the design of selective protease inhibitors. To demonstrate its utility, we applied our new method to find inhibitors of matrix metalloproteinases (MMPs), a family of homologous proteases involved in both physiological and pathological processes. By training ML models on binding data for three MMPs (MMP-1, MMP-3, and MMP-9), we successfully designed a novel N-TIMP2 variant with a differential specificity profile, namely, high affinity for MMP-9, moderate affinity for MMP-3, and low affinity for MMP-1. Our experimental validation showed that this novel variant exhibited a significant specificity shift and enhanced selectivity compared with wild-type N-TIMP2. Through molecular modeling and energy minimization, we obtained structural insights into the variant's enhanced selectivity. Our findings highlight the power of ML-based methods to reduce experimental workloads, facilitate the rational design of selective inhibitors, and advance the understanding of specific inhibitor-enzyme interactions in homologous enzyme systems.

通过机器学习修饰抑制剂对同源酶的特异性。
选择性抑制剂对于靶向治疗和探测各种生物系统中的酶功能是必不可少的。鉴定这种基于蛋白质的抑制剂的两个主要挑战在于需要大量的实验工作,包括生成大型文库,以及调整抑制剂对具有同源结构的酶的选择性。为了应对这些挑战,机器学习(ML)正被用于通过训练目标文库和识别增强亲和力和特异性的关键接口突变来改进蛋白质设计。然而,这种基于ml的方法受到能量计算不准确和难以预测多个突变的结构影响的限制。在这里,我们提出了一种基于ml的方法,利用HTS数据来简化选择性蛋白酶抑制剂的设计。为了证明它的实用性,我们应用我们的新方法来寻找基质金属蛋白酶(MMPs)的抑制剂,这是一个参与生理和病理过程的同源蛋白酶家族。通过对三种MMPs (MMP-1、MMP-3和MMP-9)的结合数据进行ML模型训练,我们成功设计了一种新的N-TIMP2变体,它具有不同的特异性,即对MMP-9具有高亲和力,对MMP-3具有中等亲和力,对MMP-1具有低亲和力。我们的实验验证表明,与野生型N-TIMP2相比,这种新变体表现出显著的特异性转移和增强的选择性。通过分子建模和能量最小化,我们获得了变体增强选择性的结构见解。我们的研究结果突出了基于ml的方法在减少实验工作量,促进选择性抑制剂的合理设计以及促进对同源酶系统中特定抑制剂-酶相互作用的理解方面的力量。
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